Type-agnostic RF signal representations

ABSTRACT

This document describes techniques and devices for type-agnostic radio frequency (RF) signal representations. These techniques and devices enable use of multiple different types of radar systems and fields through type-agnostic RF signal representations. By so doing, recognition and application-layer analysis can be independent of various radar parameters that differ between different radar systems and fields.

RELATED APPLICATIONS

This application is a continuation application claiming priority under 35 U.S.C. § 120 to U.S. patent application Ser. No. 15/142,829 file Apr. 29, 2016, which claims priority under 35 U.S.C. § 119(e) to U.S. Provisional Patent Application Ser. No. 62/155,357 filed Apr. 30, 2015, and U.S. Provisional Patent Application Ser. No. 62/237,750 filed Oct. 6, 2015, the disclosures of which are incorporated by reference herein in their entirety.

BACKGROUND

Small-screen computing devices continue to proliferate, such as smartphones and computing bracelets, rings, and watches. Like many computing devices, these small-screen devices often use virtual keyboards to interact with users. On these small screens, however, many people find interacting through virtual keyboards to be difficult, as they often result in slow and inaccurate inputs. This frustrates users and limits the applicability of small-screen computing devices. This problem has been addressed in part through screen-based gesture recognition techniques. These screen-based gestures, however, still struggle from substantial usability issues due to the size of these screens.

To address this problem, optical finger- and hand-tracking techniques have been developed, which enable gesture tracking not made on the screen. These optical techniques, however, have been large, costly, or inaccurate thereby limiting their usefulness in addressing usability issues with small-screen computing devices.

Furthermore, control through gestures continues to proliferate for other devices and uses, such as from mid to great distances. People not only wish to control devices near to them, but also those from medium to large distances, such as to control a stereo across a room, a thermostat in a different room, or a television that is a few meters away.

SUMMARY

This document describes techniques and devices for type-agnostic radio frequency (RF) signal representations. These techniques and devices enable use of multiple different types of radar systems and fields through a standard set of type-agnostic RF signal representations. By so doing, recognition and application-layer analysis can be independent of various radar parameters that differ between different radar systems and fields.

Through use of these techniques and devices, a large range of gestures, both in size of the gestures and distance from radar sensors, can be used. Even a single device having different radar systems, for example, can recognize these gestures with gesture analysis independent of the different radar systems. Gestures of a person sitting on a couch to control a television, standing in a kitchen to control an oven or refrigerator, centimeters from a computing watch's small-screen display to control an application, or even an action of a person walking out of a room causing the lights to turn off—all can be recognized without a need to build type-specific recognition and application-layer analysis.

This summary is provided to introduce simplified concepts concerning type-agnostic RF signal representations, which is further described below in the Detailed Description. This summary is not intended to identify essential features of the claimed subject matter, nor is it intended for use in determining the scope of the claimed subject matter.

BRIEF DESCRIPTION OF THE DRAWINGS

Embodiments of techniques and devices for type-agnostic RF signal representations are described with reference to the following drawings. The same numbers are used throughout the drawings to reference like features and components:

FIG. 1 illustrates an example environment in which techniques enabling type-agnostic RF signal representations may be embodied. The environment illustrates 1 to N different type-specific radar systems, an abstraction module, and a gesture module.

FIG. 2 illustrates an example of the abstraction module of FIG. 1 in detail.

FIG. 3 illustrates an example of the gesture module of FIG. 1 in detail.

FIG. 4 illustrates a computing device through which determination of type-agnostic RF signal representations can be enabled.

FIG. 5 illustrates an example method enabling gesture recognition through determination of type-agnostic RF signal representations.

FIG. 6 illustrates example different radar fields of FIG. 1.

FIG. 7 illustrates an example computing system embodying, or in which techniques may be implemented that enable use of, type-agnostic RF signal representations.

DETAILED DESCRIPTION Overview

This document describes techniques and devices enabling type-agnostic RF signal representations. These techniques and devices enable a great breadth of actions and gestures sensed through different radar types or fields, such as gestures to use, control, and interact with various devices, from smartphones to refrigerators. The techniques and devices are capable of doing so without needing to build type-specific recognition and application-layer analysis.

Consider FIG. 1, which illustrates an example environment 100 in which techniques enabling type-agnostic RF signal representations may be embodied. Environment 100 includes different type-specific radar systems 102, shown with some number from 1 to N systems, labeled type-specific radar systems 102-1, 102-2, and 102-N. These type-specific radar systems 102 may include various types of radar systems that can provide a wide variety of radar fields, such as single tone, stepped frequency modulated, linear frequency modulated, impulse, or chirped.

Each of these type-specific radar systems 102 provide different radar fields through differently structured or differently operated radar-emitting elements 104, shown with 104-1, 104-2, and 104-N. These radar fields may differ as noted herein, and may have different modulation, frequency, amplitude, or phase. Each of these type-specific radar systems 102 also includes an antenna element 106, and in some cases a pre-processor 108, labeled antenna elements 106-1, 106-2, and 106-N, and pre-preprocessor 108-1, 108-2, and 108-N, both respectively.

Each of these type-specific radar systems 102 emit radar to provide a radar field 110, and then receive reflection signals 112 from an object moving in the radar field 110. Here three human hands are shown, each performing a different gesture, a hand wave gesture 114, a fist shake gesture 116 (an American Sign Language (ASL) gesture for “Yes”), and a pinch finger gesture 118, though the techniques are not limited to human hands or gestures.

As shown, each of the type-specific radar systems 102 provides type-specific raw data 120 responsive to receiving the reflection signal 112 (only one system shown receiving the reflection signal 112 for visual brevity). Each of the type-specific radar systems 102 provide type-specific raw data 120, shown as raw data 120-1, 120-2, and 120-N, respectively for each system. Each of these raw data 120 can, but do not have to be, a raw digital sample on which pre-processing by the pre-processor 108 of the type-specific radar system 102 has been performed.

These type-specific raw data 120 are received by an abstraction module 122. Generally, the abstraction module 122 transforms each of the different types of type-specific raw data 120 into a type-agnostic signal representation 124, shown as type-agnostic signal representation 124-1, 124-2, and 124-N, respectively for each of the type-specific raw data 120-1, 120-2, and 120-N. These type-agnostic signal representations 124 are then received by recognition module 126. Generally, the recognition module 126 determines, for each of the type-agnostic signal representations 124, a gesture 128 or action of the object within the respective two or more different radar fields. Each of these gestures 128 is shown as gesture 128-1, 128-2, and 128-N, respectively, for each of the type-agnostic signal representations 124-1, 124-2, and 124-N. With the gesture 128 or action determined, the recognition module 126 passes each gesture 128 or action to another entity, such as an application executing on a device to control the application. Note that in some cases a single gesture or action is determined for multiple different raw data 120, and thus multiple different type-agnostic signal representations 124, such as in a case where two radar systems or fields are simultaneously used to sense a movement of a person in different radar fields. Functions and capabilities of the abstraction module 122 are described in greater detail as part of FIG. 2 and of the recognition module 126 as part of FIG. 3.

Example Abstraction Module

FIG. 2 illustrates an example of the abstraction module 122 of FIG. 1. The abstraction module 122 receives one or more of the type-specific raw data 120 and outputs, for each of the raw data 120-1, 120-2, through 120-N, a type-agnostic signal representation 124-1, 124-2, through 124-N, respectively. In some cases, the raw data 120 is first processed by raw signal processor 202, which is configured to provide a complex signal based on the type-specific raw data 120 where the complex signal contains amplitude and phase information from which a phase of the type-specific raw data 120 can be extracted and unwrapped. Examples types of processing include, for impulse radar (a type of low-power ultra-wideband radar), a smoothing bandpass filter and a Hilbert transform. Processing for frequency-modulated continuous-wave (FM-CW) radar includes windowing filtering and range fast-Fourier transforming (FFT). Further still, processing by the raw signal processor 202 can be configured to pulse shape filter and pulse compress binary phase-shift keying (BPSK) radar.

Whether processed by the raw signal processor 202 or received as the type-specific raw data 120, a signal transformer 204 acts to transform raw data (processed or otherwise) into the type-agnostic signal representation 124. Generally, the signal transformer is configured to model the object captured by the raw data as a set of scattering centers where each of the set of scattering centers having a reflectivity that is dependent on a shape, size, aspect, or material of the object that makes a movement to perform a gesture or action. To do so, the signal transformer 204 may extract object properties and dynamics from the type-specific raw data 120 as a function of fast time (e.g., with each acquisition) and slow time (e.g., across multiple acquisitions) or a transient or late-time electromagnetic (EM) response of the set of scattering centers.

This is illustrated with four example transforms, which may be used alone or in conjunction. These include transforming the data into a range-Doppler-time profile 206, a range-time profile 208, a micro-Doppler profile 210, and a fast-time spectrogram 212. The range-Doppler-time profile 206 resolves scattering centers in range and velocity dimensions. The range-time profile 208 is a time history of range profiles. The micro-Doppler profile 210 is time history of Doppler profiles. The fast-time spectrogram 212 identifies frequency/target-dependent signal fading and resonances. Each of these transforms are type-agnostic signal representations, though the type-agnostic signal representation 124 may include one or more of each.

Example Gesture Module

As noted above, functions and capabilities of the recognition module 126 are described in more detail as part of FIG. 3. As shown, FIG. 3 illustrates an example of the recognition module 126 of FIG. 1, which includes a feature extractor 302 and a gesture recognizer 304. Generally, the recognition module 126 receives the type-agnostic signal representation 124 (shown with 1 to N signal representations, though as few as one can be received and recognized) and determines, based on the type-agnostic signal representation 124, a gesture or action of the object within the respective different type of type-specific radar field from which the type-agnostic signal representation 124 was determined. In more detail, the feature extractor 302 is configured to extract type-agnostic features, such as signal transformations, engineered features, computer-vision features, machine-learned features, or inferred target features.

In more detail, the gesture recognizer 304 is configured to determine actions or gestures performed by the object, such as walking out of a room, sitting, or gesturing to change a channel, turn down a media player, or turn off an oven, for example. To do so, the gesture recognizer 304 can determine a gesture classification, motion parameter tracking, regression estimate, or gesture probability based on the type-agnostic signal representation 124 or the post-extracted features from the feature extractor 302. The gesture recognizer 304 may also map the gesture 128 to a pre-configured control gesture associated with a control input for the application and/or device 306. The recognition module 126 then passes each determined gesture 128 (shown with 1 to N gestures, though as few as one can be determined) effective to control an application and/or device 306, such as to control or alter a user interface on a display, a function, or a capability of a device. As shown in FIG. 1, these gestures may include gestures of a human hand, such as the hand wave gesture 114, the fist shake gesture 116, and the pinch finger gesture 118 to name but a few.

As noted above, the techniques for determining type-agnostic RF signal representations permit recognition and application-layer analysis to be independent of various radar parameters that differ between different radar systems and fields. This enables few or none of the elements of FIG. 3 to be specific to a particular radar system. Thus, the recognition module 126 need not be specific to the type of radar field, or built to accommodate one or even any types of radar fields. Further, the application and/or device 306 need not require application-layer analysis. The recognition module 126 and the application and/or device 306 may therefore by universal to many different types of radar systems and fields.

This document now turns to an example computing device in which type-agnostic RF signal representations can be used, and then follows with an example method and example radar fields, and ends with an example computing system.

Example Computing Device

FIG. 4 illustrates a computing device through which type-agnostic RF signal representations can be enabled. Computing device 402 is illustrated with various non-limiting example devices, desktop computer 402-1, computing watch 402-2, smartphone 402-3, tablet 402-4, computing ring 402-5, computing spectacles 402-6, and microwave 402-7, though other devices may also be used, such as home automation and control systems, entertainment systems, audio systems, other home appliances, security systems, netbooks, automobiles, and e-readers. Note that the computing device 402 can be wearable, non-wearable but mobile, or relatively immobile (e.g., desktops and appliances).

The computing device 402 includes one or more computer processors 404 and computer-readable media 406, which includes memory media and storage media. Applications and/or an operating system (not shown) embodied as computer-readable instructions on computer-readable media 406 can be executed by processors 404 to provide some of the functionalities described herein. Computer-readable media 406 also includes the abstraction module 122 and the recognition module 126, and may also include each of their optional components, the raw signal processor 202, the signal transformer 204, the feature extractor 302, and the gesture recognizer 304 (described above).

The computing device 402 may also include one or more network interfaces 408 for communicating data over wired, wireless, or optical networks and a display 410. By way of example and not limitation, the network interface 408 may communicate data over a local-area-network (LAN), a wireless local-area-network (WLAN), a personal-area-network (PAN), a wide-area-network (WAN), an intranet, the Internet, a peer-to-peer network, point-to-point network, a mesh network, and the like. The display 410 can be integral with the computing device 402 or associated with it, such as with the desktop computer 402-1.

The computing device 402 is also shown including one or more type-specific radar systems 102 from FIG. 1. As noted, these type-specific radar systems 102 each provide different types of the radar fields 110, whether by different types of radar-emitting elements 104 or different ways of using as little as one type of radar-emitting element 104, and thus provide different types of raw data 120.

In more detail, the different types of the radar fields 110 may include continuous wave and pulsed radar systems, and fields for close or far recognition, or for line-of-sight or obstructed use. Pulsed radar systems are often of shorter transmit time and higher peak power, and include both impulse and chirped radar systems. Pulsed radar systems have a range based on time of flight and a velocity based on frequency shift. Chirped radar systems have a range based on time of flight (pulse compressed) and a velocity based on frequency shift. Continuous wave radar systems are often of relatively longer transmit time and lower peak power. These continuous wave radar systems include single tone, linear frequency modulated (FM), and stepped FM types. Single tone radar systems have a limited range based on the phase and a velocity based on frequency shift. Linear FM radar systems have a range based on frequency shift and a velocity also based on frequency shift. Stepped FM radar systems have a range based on phase or time of flight and a velocity based on frequency shift. While these five types of radar systems are noted herein, others may also be used, such as sinusoidal modulation scheme radar systems.

These radar fields 110 can vary from a small size, such as between one and fifty millimeters, to one half to five meters, to even one to about 30 meters. In the larger-size fields, the antenna element 106 can be configured to receive and process reflections of the radar field to provide large-body gestures based on reflections from human tissue caused by body, arm, or leg movements, though smaller and more-precise gestures can be sensed as well. Example larger-sized radar fields include those in which a user makes gestures to control a television from a couch, change a song or volume from a stereo across a room, turn off an oven or oven timer (a near field would also be useful), turn lights on or off in a room, and so forth.

Note also that the type-specific radar systems 102 can be used with, or embedded within, many different computing devices or peripherals, such as in walls of a home to control home appliances and systems (e.g., automation control panel), in automobiles to control internal functions (e.g., volume, cruise control, or even driving of the car), or as an attachment to a laptop computer to control computing applications on the laptop.

The radar-emitting element 104 can be configured to provide a narrow or wide radar field from little if any distance from a computing device or its display, including radar fields that are a full contiguous field in contrast to beam-scanning radar field. The radar-emitting element 104 can be configured to provide the radars of the various types set forth above. The antenna element 106 is configured to receive reflections of, or sense interactions in, the radar field. In some cases, reflections include those from human tissue that is within the radar field, such as a hand or arm movement. The antenna element 106 can include one or many antennas or sensors, such as an array of radiation sensors, the number in the array based on a desired resolution and whether the field is a surface or volume.

Example Method

FIG. 5 depicts a method 500 that recognizes gestures and actions using type-agnostic RF signal representations. The method 500 receives type-specific raw data from one or more different types of radar fields, and then transforms those type-specific raw data into type-agnostic signal representations, which are then used to determine gestures or actions within the respective different radar fields. This method is shown as sets of blocks that specify operations performed but are not necessarily limited to the order or combinations shown for performing the operations by the respective blocks. In portions of the following discussion reference may be made to environment 100 of FIG. 1 and as detailed in FIG. 2 or 3, reference to which is made for example only. The techniques are not limited to performance by one entity or multiple entities operating on one device.

In more detail, the method 500, at 502, receives different types of type-specific raw data representing two or more different reflection signals. These two or more different reflection signals, as noted above, are each reflected from an object moving in each of two or more different radar fields. These reflection signals can be received at a same or nearly same time for one movement in two radar fields or two different movements in two different fields at different times. These different movements and times can include, for example, a micro-movement of two fingers to control a smart watch and a large gesture to control a stereo in another room, with one movement made today and another yesterday. While different types of radar systems are illustrated in FIG. 1, the different radar fields can be provided through even a same radar system that follows two or more modulation schemes.

By way of example, consider six different radar fields 110, shown at radar fields 602, 604, 606, 608, 610, and 612 of FIG. 6. While difficult to show differences at the granular level of modulations schemes and so forth, FIG. 6 illustrates some of the different applications of these radar fields, from close to far, and from high resolution to low, and so forth. The radar fields 602, 604, and 606 include three similar radar fields for detecting user actions and gestures, such as walking in or out of a room, making a large gesture to operate a game on a television or computer, and a smaller gesture for controlling a thermostat or oven. The radar field 608 shows a smaller field for control of a computing watch by a user's other hand that is not wearing the watch. The radar field 610 shows a non-volumetric radar field for control by a user's hand that is wearing the computing watch.

The radar field 612 shows an intermediate-sized radar field enabling control of a computer at about ½ to 3 meters.

These radar fields 602 to 612 enable a user to perform complex or simple gestures with his or her arm, body, finger, fingers, hand, or hands (or a device like a stylus) that interrupts the radar field. Example gestures include the many gestures usable with current touch-sensitive displays, such as swipes, two-finger pinch, spread, rotate, tap, and so forth. Other gestures are enabled that are complex, or simple but three-dimensional, examples include the many sign-language gestures, e.g., those of American Sign Language (ASL) and other sign languages worldwide. A few examples of these are: an up-and-down fist, which in ASL means “Yes”; an open index and middle finger moving to connect to an open thumb, which means “No”; a flat hand moving up a step, which means “Advance”; a flat and angled hand moving up and down, which means “Afternoon”; clenched fingers and open thumb moving to open fingers and an open thumb, which means “taxicab”; an index finger moving up in a roughly vertical direction, which means “up”; and so forth. These are but a few of many gestures that can be sensed as well as be mapped to particular devices or applications, such as the advance gesture to skip to another song on a web-based radio application, a next song on a compact disk playing on a stereo, or a next page or image in a file or album on a computer display or digital picture frame.

Returning to FIG. 5, at 504, the method 500 transforms each of the different types of type-specific raw data into a type-agnostic signal representation. As noted above, these transformations can be through determining range-Doppler-time profiles 506, determining range-time profiles 508, determining micro-Doppler profiles 510, and determining fast-time spectrograms 512. These are described in greater detail as part of

FIG. 2's description.

At 514, the method 500 determines, for each of the two or more type-agnostic signal representations created at operation 504, a gesture or action of the object within the respective two or more different radar fields.

Note that the object making the movement in each of the two or more different radar fields can be a same object making a same action. In such a case, two different types of radar fields are used to improve gesture recognition, robustness, resolution, and so forth. Therefore, determining the gesture or action performed by the object's movement is based, in this case, on both of the two or more type-agnostic signal representations.

At 516, the method 500 passes each of the determined gestures or actions to an application or device effective to control or alter a display, function, or capability associated with the application.

Example Computing System

FIG. 7 illustrates various components of an example computing system 700 that can be implemented as any type of client, server, and/or computing device as described with reference to the previous FIGS. 1-6 to implement type-agnostic RF signal representations.

The computing system 700 includes communication devices 702 that enable wired and/or wireless communication of device data 704 (e.g., received data, data that is being received, data scheduled for broadcast, data packets of the data, etc.). Device data 704 or other device content can include configuration settings of the device, media content stored on the device, and/or information associated with a user of the device (e.g., an identity of an actor performing a gesture). Media content stored on the computing system 700 can include any type of audio, video, and/or image data. The computing system 700 includes one or more data inputs 706 via which any type of data, media content, and/or inputs can be received, such as human utterances, interactions with a radar field, user-selectable inputs (explicit or implicit), messages, music, television media content, recorded video content, and any other type of audio, video, and/or image data received from any content and/or data source.

The computing system 700 also includes communication interfaces 708, which can be implemented as any one or more of a serial and/or parallel interface, a wireless interface, any type of network interface, a modem, and as any other type of communication interface. Communication interfaces 708 provide a connection and/or communication links between the computing system 700 and a communication network by which other electronic, computing, and communication devices communicate data with the computing system 700.

The computing system 700 includes one or more processors 710 (e.g., any of microprocessors, controllers, and the like), which process various computer-executable instructions to control the operation of the computing system 700 and to enable techniques for, or in which can be embodied, type-agnostic RF signal representations. Alternatively or in addition, the computing system 700 can be implemented with any one or combination of hardware, firmware, or fixed logic circuitry that is implemented in connection with processing and control circuits which are generally identified at 712. Although not shown, the computing system 700 can include a system bus or data transfer system that couples the various components within the device. A system bus can include any one or combination of different bus structures, such as a memory bus or memory controller, a peripheral bus, a universal serial bus, and/or a processor or local bus that utilizes any of a variety of bus architectures.

The computing system 700 also includes computer-readable media 714, such as one or more memory devices that enable persistent and/or non-transitory data storage (i.e., in contrast to mere signal transmission), examples of which include random access memory (RAM), non-volatile memory (e.g., any one or more of a read-only memory (ROM), flash memory, EPROM, EEPROM, etc.), and a disk storage device. A disk storage device may be implemented as any type of magnetic or optical storage device, such as a hard disk drive, a recordable and/or rewriteable compact disc (CD), any type of a digital versatile disc (DVD), and the like. The computing system 700 can also include a mass storage media device (storage media) 716.

The computer-readable media 714 provides data storage mechanisms to store the device data 704, as well as various device applications 718 and any other types of information and/or data related to operational aspects of the computing system 700. For example, an operating system 720 can be maintained as a computer application with the computer-readable media 714 and executed on the processors 710. The device applications 718 may include a device manager, such as any form of a control application, software application, signal-processing and control module, code that is native to a particular device, an abstraction module or gesture module and so on. The device applications 718 also include system components, engines, or managers to implement type-agnostic RF signal representations, such as the abstraction module 122 and the recognition module 126.

The computing system 700 may also include, or have access to, one or more of the type-specific radar systems 102, including the radar-emitting element 104 and the antenna element 106. While not shown, one or more elements of the abstraction module 122 or the recognition module 126 may be operated, in whole or in part, through hardware, such as being integrated, in whole or in part, with the type-specific radar systems 102.

Conclusion

Although techniques using, and apparatuses including, type-agnostic RF signal representations have been described in language specific to features and/or methods, it is to be understood that the subject of the appended claims is not necessarily limited to the specific features or methods described. Rather, the specific features and methods are disclosed as example implementations of ways in which to determine type-agnostic RF signal representations. 

What is claimed is:
 1. At least one non-transitory computer-readable storage medium having instructions stored thereon that, responsive to execution by at least one computer processor, cause the computer processor to: receive type-specific raw data representing a reflection signal caused by movement of an object within a type-specific radar field, the reflection signal comprising a superposition of reflections of a plurality of points of the object; transform the type-specific raw data into a type-agnostic signal representation that is independent of parameters of the type-specific radar field, the transformation according to a model of the object as a set of scattering centers, each of the scattering centers corresponding to one of the points of the object; and determine, based on the type-agnostic signal representation, a gesture or action performed by the object.
 2. The computer-readable storage media of claim 1, wherein: the instructions further cause the computer processor to receive a complex signal based on the type-specific raw data, the complex signal having amplitude and phase information from which a phase of the type-specific raw data can be extracted and unwrapped; and the type-agnostic signal representation is based on the phase of the type-specific raw data.
 3. The computer-readable storage media of claim 1, wherein the type-agnostic signal representation comprises a range-Doppler-time profile, range-time profile, micro-Doppler profile, or fast-time spectrogram for the type-specific raw data.
 4. The computer-readable storage media of claim 1, wherein: the instructions further cause the computer processor to extract a type-agnostic feature from the type-agnostic signal representation, the type-agnostic feature comprising a signal transformation, engineered feature, computer-vision feature, machine-learned feature, or inferred target feature; and the determination of the gesture or action performed by the object is based on the type-agnostic feature.
 5. The computer-readable storage media of claim 1, wherein: the instructions further cause the processor to determine a gesture classification, motion parameter tracking, regression estimate, or gesture probability; and the determination of the gesture or action performed by the object is based on the gesture classification, motion parameter tracking, regression estimate, or gesture probability.
 6. The computer-readable storage media of claim 1, wherein: the instructions further cause the processor to: receive other type-specific raw data representing another reflection signal caused by movement of the object within another type-specific radar field; and transform the other type-specific raw data into another type-agnostic signal representation; and the determination of the gesture or action performed by the object is further based on the other type-agnostic signal representation.
 7. The computer-readable storage media of claim 1, wherein the parameters of the type-specific radar field comprise modulation, frequency, amplitude, or phase parameters.
 8. The computer-readable storage media of claim 1, wherein the parameters comprise the type-specific radar field being a single tone, stepped frequency modulated, linear frequency modulated, impulse, or chirped.
 9. A computer-implemented method comprising: receiving type-specific raw data representing a reflection signal caused by movement of an object within a type-specific radar field, the reflection signal comprising a superposition of reflections of a plurality of points of the object; transforming the type-specific raw data into a type-agnostic signal representation that is independent of parameters of the type-specific radar field, the transformation according to a model of the object as a set of scattering centers, each of the scattering centers corresponding to one of the points of the object; determining, based on the type-agnostic signal representation, a gesture or action performed by the object; and passing the determined gesture or action to an application effective to control or alter a display, function, or capability associated with the application.
 10. The method of claim 9, wherein the type-agnostic signal representation is independent of modulation, frequency, amplitude, or phase of the type-specific radar field.
 11. The method of claim 9, wherein the type-agnostic signal representation is independent of the type-specific radar field being single tone, stepped frequency modulated, linear frequency modulated, impulse, or chirped.
 12. The method of claim 9, wherein the type-agnostic signal representation comprises a range-Doppler profile, a range profile, a micro-Doppler profile, or a fast-time spectrogram.
 13. The method of claim 9, further comprising receiving a complex signal based on the type-specific raw data, the complex signal having amplitude and phase information from which a phase of the type-specific raw data can be extracted and unwrapped; and wherein the type-agnostic signal representation is based on the phase of the type-specific raw data.
 14. The method of claim 9, further comprising determining a gesture classification, motion parameter tracking, regression estimate, or gesture probability; and wherein the determination of the gesture or action performed by the object is based on the gesture classification, motion parameter tracking, regression estimate, or gesture probability.
 15. An apparatus comprising: at least one computer processor; a type-specific radar system configured to provide a type-specific radar field, the type-specific radar field provided though a modulation scheme or a type of hardware radar-emitting element, the type-specific radar system comprising: at least one radar-emitting element configured to provide the type-specific radar field; and at least one antenna element configured to receive a reflection signal caused by an object moving in the type-specific radar field; and at least one computer-readable storage medium having instructions stored thereon that, responsive to execution by the computer processor, cause the computer processor to: receive type-specific raw data representing the reflection signal caused by movement of the object within the type-specific radar field, the reflection signal comprising a superposition of reflections of a plurality of points of the object; transform the type-specific raw data into a type-agnostic signal representation that is independent of parameters of the type-specific radar field, the transformation according to a model of the object as a set of scattering centers, each of the scattering centers corresponding to one of the points of the object; determine, based on the type-agnostic signal representation, a gesture or action performed by the object; and pass the determined gesture or action to an application effective to control or alter a display, function, or capability associated with the application.
 16. The apparatus of claim 15, wherein the type-agnostic signal representation comprises a range-Doppler profile, a range profile, a micro-Doppler profile, or a fast-time spectrogram.
 17. The apparatus of claim 15, wherein: the instructions further cause the processor to receive a complex signal based on the type-specific raw data, the complex signal having amplitude and phase information from which a phase of the type-specific raw data can be extracted and unwrapped; and the type-agnostic signal representation is based on the phase of the type-specific raw data.
 18. The apparatus of claim 15, wherein: the instructions further cause the processor to determine a gesture classification, motion parameter tracking, regression estimate, or gesture probability; and the determination of the gesture or action performed by the object is based on the gesture classification, motion parameter tracking, regression estimate, or gesture probability.
 19. The apparatus of claim 15, wherein the apparatus is a mobile computing device having the display.
 20. The apparatus of claim 19, wherein the determined gesture or action is a gesture controlling a user interface associated with the application and presented on the display. 